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arxiv 2401.00353 v1 pith:CWO5QZPY submitted 2023-12-30 cs.IR

EXPLORE -- Explainable Song Recommendation

classification cs.IR
keywords userrecommendationexplainablefilteringmusicsystemaddressadvanced
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This study explores the development of an explainable music recommendation system with enhanced user control. Leveraging a hybrid of collaborative filtering and content-based filtering, we address the challenges of opaque recommendation logic and lack of user influence on results. We present a novel approach combining advanced algorithms and an interactive user interface. Our methodology integrates Spotify data with user preference analytics to tailor music suggestions. Evaluation through RMSE and user studies underscores the efficacy and user satisfaction with our system. The paper concludes with potential directions for future enhancements in group recommendations and dynamic feedback integration.

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